Spatiotemporal vaccine allocation policies for epidemics with behavioral feedback dynamics

Julius Barth, SumsChi-Kwong Li, Hrayer Aprahamian, D. Gupta
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Abstract

Motivated by the COVID‐19 pandemic, we study how a public health authority may allocate vaccines from a limited stockpile to different jurisdictions over time. We propose an epidemiological model with time‐varying contact rates determined by a stylized behavioral feedback mechanism to reflect multi‐wave transmission dynamics. We evaluate the performance of various information‐sensitive allocation policies (e.g., allocation proportional to local incidence) as alternatives to the widely used pro‐rata policy. We also obtain optimized allocation strategies under the proposed epidemiological model with fairness and implementable freeze‐period constraints. For the case of a multi‐wave epidemic as represented by our compartmental model with behavioral feedback, we find that none of the alternative policies offers consistently more efficient allocations than a simple pro‐rata policy across a broad range of behavioral parameter settings. In fact, in some cases the alternative policies may actually result in less efficient allocations than the pro‐rata policy. Thus our results support the conclusion that the widely used pro‐rata policy can be well justified because it is simple to explain/implement and does not cause unexpected adverse effects. However, if policy makers are willing to invest in more tailored strategies based on numerical optimization, then the identified optimized strategies are a more favorable option as they allow for a more efficient allocation of vaccines.
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基于行为反馈动力学的流行病疫苗时空分配策略
受COVID - 19大流行的影响,我们研究了公共卫生当局如何随着时间的推移将有限库存的疫苗分配到不同的司法管辖区。我们提出了一个时变接触率的流行病学模型,该模型由程式化的行为反馈机制决定,以反映多波传播动力学。我们评估了各种信息敏感分配策略(例如,与当地发病率成比例的分配)作为广泛使用的比例策略的替代方案的性能。在具有公平性和可实施冻结期约束的流行病学模型下,我们还得到了优化的分配策略。对于我们的带有行为反馈的分区模型所代表的多波流行病,我们发现,在广泛的行为参数设置范围内,没有一种替代策略比简单的按比例策略始终提供更有效的分配。事实上,在某些情况下,替代政策实际上可能导致分配效率低于按比例政策。因此,我们的研究结果支持这样的结论,即广泛使用的按比例政策可以很好地证明是合理的,因为它很容易解释/实施,并且不会造成意想不到的不利影响。然而,如果决策者愿意投资于基于数值优化的更有针对性的策略,那么确定的优化策略是一个更有利的选择,因为它们允许更有效地分配疫苗。
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